20

Pyspark n00b... How do I replace a column with a substring of itself? I'm trying to remove a select number of characters from the start and end of string.

from pyspark.sql.functions import substring
import pandas as pd
pdf = pd.DataFrame({'COLUMN_NAME':['_string_','_another string_']})
# this is what i'm looking for...
pdf['COLUMN_NAME_fix']=pdf['COLUMN_NAME'].str[1:-1] 

df = sqlContext.createDataFrame(pdf)
# following not working... COLUMN_NAME_fix is blank
df.withColumn('COLUMN_NAME_fix', substring('COLUMN_NAME', 1, -1)).show() 

This is pretty close but slightly different Spark Dataframe column with last character of other column. And then there is this LEFT and RIGHT function in PySpark SQL

5 Answers 5

28

pyspark.sql.functions.substring(str, pos, len)

Substring starts at pos and is of length len when str is String type or returns the slice of byte array that starts at pos in byte and is of length len when str is Binary type

In your code,

df.withColumn('COLUMN_NAME_fix', substring('COLUMN_NAME', 1, -1))
1 is pos and -1 becomes len, length can't be -1 and so it returns null

Try this, (with fixed syntax)

from pyspark.sql.types import StringType
from pyspark.sql.functions import udf

udf1 = udf(lambda x:x[1:-1],StringType())
df.withColumn('COLUMN_NAME_fix',udf1('COLUMN_NAME')).show()
0
20

try:

df.withColumn('COLUMN_NAME_fix', df['COLUMN_NAME'].substr(1, 10)).show()

where 1 = start position in the string and 10 = number of characters to include from start position (inclusive)

3
  • 3
    what if the length is dynamic?
    – citynorman
    Dec 8, 2017 at 3:34
  • use : df['COLUMN_NAME'].substr(startPos, strLength) where startPos is the variable start position and strLength is the variable length of the number of characters to include Dec 8, 2017 at 10:39
  • 3
    Yeah this fails if strLength changes between samples as in my example above
    – citynorman
    Dec 8, 2017 at 14:34
13

The accepted answer uses a udf (user defined function), which is usually (much) slower than native spark code. Grant Shannon's answer does use native spark code, but as noted in the comments by citynorman, it is not 100% clear how this works for variable string lengths.

Answer with native spark code (no udf) and variable string length

From the documentation of substr in pyspark, we can see that the arguments: startPos and length can be either int or Column types (both must be the same type). So we just need to create a column that contains the string length and use that as argument.

import pyspark.sql.functions as F

result = (
    df
    .withColumn('length', F.length('COLUMN_NAME'))
    .withColumn('fixed_in_spark', F.col('COLUMN_NAME').substr(F.lit(2), F.col('length') - F.lit(2)))
)

# result:
+----------------+---------------+----+--------------+
|     COLUMN_NAME|COLUMN_NAME_fix|size|fixed_in_spark|
+----------------+---------------+----+--------------+
|        _string_|         string|   8|        string|
|_another string_| another string|  16|another string|
+----------------+---------------+----+--------------+

Note:

  • We use length - 2 because we start from the second character (and need everything up to the 2nd last).
  • We need to use F.lit because we cannot add (or subtract) a number to a Column object. We need to first convert that number into a Column.
2
  • I tried this but I get an error "pyspark.sql.utils.AnalysisException: cannot resolve 'length' given input columns:"
    – TawabG
    Apr 18, 2023 at 9:13
  • Is it possible your columns names contain spaces? This sounds like a more generic error: stackoverflow.com/questions/39016440/… .
    – Willem
    Apr 19, 2023 at 10:06
0

if the goal is to remove '_' from the column names then I would use list comprehension instead:

df.select(
    [ col(c).alias(c.replace('_', '') ) for c in df.columns ]
)
0

SQL alternative

  df = spark.sql("SELECT
      COLUMN_NAME,
      LENGTH(COLUMN_NAME) AS length,
      SUBSTRING(COLUMN_NAME, 2, LENGTH(COLUMN_NAME) - 2) AS fixed_in_sql
    FROM
      your_table")

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